This article presents a New Neutrosophic C-Means (NNCMs) method for clustering. It uses the neutrosophic logic (NL), to generalize the Fuzzy C-Means (FCM) clustering system. The NNCMs system assigns objects to clusters using three degrees of membership: a degree of truth, a degree of indeterminacy, and a degree of falsity, rather than only the truth degree used in the FCM. The indeterminacy degree, in the NL, helps in categorizing objects laying in the intersection and the boundary areas. Therefore, the NNCMs reaches more accurate results in clustering. These degrees are initialized randomly without any constraints. That is followed by calculating the clusters’ centers
On the one hand, the most extensively used Hierarchical Clustering techniques are the Hierarchical D...
The fuzzy clustering algorithm has been widely used in the research area and production and life. Ho...
101 p.Clustering represents a core research area of machine learning. It has been widely used in dat...
This article presents a New Neutrosophic C-Means (NNCMs) method for clustering. It uses the neutroso...
Data clustering is an important field in pattern recognition and machine learning. Fuzzy c-means is ...
Abstract — Clustering is a collection of objects which are similar between them and dissimilar to th...
In Data mining, Fuzzy clustering algorithms have demonstrated advantage over crisp clustering algori...
This paper proposes a fuzzy clustering algorithm through neutrosophic association matrix. In the fir...
Data clustering is an important field in pattern recognition and machine learning. Fuzzy c-means is ...
Data clustering is an important field in pattern recognition and machine learning. Fuzzy c-means is ...
This paper proposes a fuzzy clustering algorithm through neutrosophic association matrix. In the fir...
This paper proposes a fuzzy clustering algorithm through neutrosophic association matrix. In the fir...
Fuzzy C-Means (FCM) is a data clustering technique where the existence of each data point in a clust...
One of the standard approaches for data analysis in unsupervised machine learning techniques is clus...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
On the one hand, the most extensively used Hierarchical Clustering techniques are the Hierarchical D...
The fuzzy clustering algorithm has been widely used in the research area and production and life. Ho...
101 p.Clustering represents a core research area of machine learning. It has been widely used in dat...
This article presents a New Neutrosophic C-Means (NNCMs) method for clustering. It uses the neutroso...
Data clustering is an important field in pattern recognition and machine learning. Fuzzy c-means is ...
Abstract — Clustering is a collection of objects which are similar between them and dissimilar to th...
In Data mining, Fuzzy clustering algorithms have demonstrated advantage over crisp clustering algori...
This paper proposes a fuzzy clustering algorithm through neutrosophic association matrix. In the fir...
Data clustering is an important field in pattern recognition and machine learning. Fuzzy c-means is ...
Data clustering is an important field in pattern recognition and machine learning. Fuzzy c-means is ...
This paper proposes a fuzzy clustering algorithm through neutrosophic association matrix. In the fir...
This paper proposes a fuzzy clustering algorithm through neutrosophic association matrix. In the fir...
Fuzzy C-Means (FCM) is a data clustering technique where the existence of each data point in a clust...
One of the standard approaches for data analysis in unsupervised machine learning techniques is clus...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
On the one hand, the most extensively used Hierarchical Clustering techniques are the Hierarchical D...
The fuzzy clustering algorithm has been widely used in the research area and production and life. Ho...
101 p.Clustering represents a core research area of machine learning. It has been widely used in dat...